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Face detection under variable lighting based on resample by face relighting

机译:基于人脸重新照明的重采样,在可变光照下进行人脸检测

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Different environment illuminations have a great impact on face detection. We present a solution based on face relighting technology. The basic idea is that there exists nine harmonic images that can be derived from a 3D model of a face, and by which we can estimate the illumination coefficient of any face sample. Using an illumination radio image, we can produce images under new lighting conditions. To detect the faces under certain lighting condition, we relight the original face samples to get more new faces under different kinds of possible lighting condition, and add them to the training set. Our experimental results on support vector machine (SVM) turns out that the relighting subspace is effective in face detection under various lighting conditions. Moreover, if we relight original face samples to the new samples under different illuminations, the collected example sets are multiplied. We use the expanded database to train an AdaBoost-based face detector and test it on the MIT+CMU frontal face test set. The experimental results show that the data collection can be efficiently speeded up by the proposed methods. The later experiment also verifies the generalization capability of the proposed method.
机译:不同的环境照明对面部检测产生了很大的影响。我们提出了一种基于面部致密技术的解决方案。基本思想是存在九个谐波图像,其可以从面部的3D模型导出,并且我们可以估计任何面部样本的照明系数。使用照明无线图像,我们可以在新的照明条件下产生图像。要在某些照明条件下检测面孔,我们可以在不同种类的可能照明条件下致密原始面部样本以获得更多新面孔,并将其添加到培训集中。我们在支持向量机(SVM)上的实验结果证明,在各种照明条件下,临理子空间在面部检测方面是有效的。此外,如果我们在不同的照明下对新样本的赖特原始面部样本,则乘以收集的示例集。我们使用扩展的数据库培训了基于Adaboost的面部检测器并在MIT + CMU正面测试集上测试。实验结果表明,数据收集可以通过所提出的方法有效地加速。后来的实验还验证了该方法的泛化能力。

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